Department of Chemistry, Virginia Commonwealth University , Richmond, Virginia 23284, United States.
Department of Pharmacotherapy and Outcomes Science, Virginia Commonwealth University , Richmond, Virginia 23284, United States.
Anal Chem. 2016 Nov 15;88(22):11092-11099. doi: 10.1021/acs.analchem.6b03116. Epub 2016 Nov 1.
Methods such as liquid chromatography coupled with high-resolution mass spectrometry (LC-HRMS) are crucial for differentiating compounds with highly similar masses. This is a necessity when analyzing highly complex samples; however, the size of high-resolution LC-HRMS data sets can cause difficulties when applying advanced data analysis techniques. In this work, LC-HRMS analyses of known amphetamine samples and unknown bacterial lipid samples were carried out, and multivariate curve resolution-alternating least squares (MCR-ALS) was applied to the data to obtain mathematical separation of overlapped analyte signals. In order to minimize computational strain, a novel strategy was developed which minimizes the number of irrelevant masses analyzed at full resolution. To do this, data were first binned to unit mass resolution, and MCR-ALS was performed. This provided mathematical components for each analyte present plus background components. In the resolved spectral profiles of analyte components, masses above a preset intensity threshold were extracted, discarding all other masses, and expanded to successively higher levels of resolution, applying MCR-ALS at each level. These steps were repeated until 0.001 amu resolution was achieved, as dictated by the resolution of the instrument-in this case, a time-of-flight mass spectrometer. This strategy allowed for the accurate recovery of all known amphetamine compounds and select bacterial lipid extracts while minimizing the size of the data, therefore minimizing computational analysis time and data storage requirements. This relatively simple strategy enables the effective coupling of LC-HRMS with MCR-ALS.
方法,如液相色谱与高分辨率质谱联用(LC-HRMS),对于区分具有高度相似质量的化合物至关重要。在分析高度复杂的样品时,这是必需的;然而,高分辨率 LC-HRMS 数据集的大小可能会在应用先进数据分析技术时带来困难。在这项工作中,对已知安非他命样品和未知细菌脂质样品进行了 LC-HRMS 分析,并将多变量曲线分辨交替最小二乘法(MCR-ALS)应用于数据中,以获得重叠分析物信号的数学分离。为了最小化计算负担,开发了一种新策略,该策略最大限度地减少了在全分辨率下分析的无关质量的数量。为此,首先将数据以单位质量分辨率进行分箱,并执行 MCR-ALS。这为每个存在的分析物加上背景成分提供了数学成分。在分析物成分的分辨光谱轮廓中,提取超过预设强度阈值的质量,丢弃所有其他质量,并扩展到连续更高的分辨率水平,在每个水平应用 MCR-ALS。这些步骤重复进行,直到达到仪器分辨率(在这种情况下为飞行时间质谱仪)所规定的 0.001 amu 分辨率。该策略允许准确回收所有已知的安非他命化合物和选定的细菌脂质提取物,同时最小化数据量,从而最小化计算分析时间和数据存储需求。这种相对简单的策略能够有效地将 LC-HRMS 与 MCR-ALS 结合。